首页> 外文期刊>Global Knowledge, Memory and Communication >Twitter sentiment analysis of app based online food delivery companies
【24h】

Twitter sentiment analysis of app based online food delivery companies

机译:微博情感分析的在线应用的基础食物快递公司

获取原文
获取原文并翻译 | 示例
       

摘要

Purpose - There is a strong need for companies to monitor customer-generated content of social media, not only about themselves but also about competitors, to deal with competition and to assess competitive environment of the business. The purpose of this paper is to help companies with social media competitive analysis and transformation of social media data into knowledge creation for decision-makers, specifically for app-based food delivery companies. Design/methodology/approach - Three online app-based food delivery companies, i.e. Swiggy, Zomato and UberEats, were considered in this study. Twitter was used as the data collection platform where customer's tweets related to all three companies are fetched using R-Studio and Lexicon-based sentiment analysis method is applied on the tweets fetched for the companies. A descriptive analytical method is used to compute the score of different sentiments. A negative and positive sentiment word list is created to match the word present on the tweets and based on the matching positive, negative and neutral sentiments score are decided. The sentiment analysis is a best method to analyze consumer's text sentiment. Lexicon-based sentiment classification is always preferable than machine learning or other model because it gives flexibility to make your own sentiment dictionary to classify emotions. To perform tweets sentiment analysis, lexicon-based classification method and text mining were performed on R-Studio platform. Findings - Results suggest that Zomato (26% positive sentiments) has received more positive sentiments as compared to the other two companies (25% positive sentiments for Swiggy and 24% positive sentiments for UberEats). Negative sentiments for the Zomato was also low (12% negative sentiments) compared to Swiggy and UberEats (13% negative sentiments for both). Further, based on negative sentiments concerning all the three food delivery companies, tweets were analyzed and recommendations for business provided. Research limitations/implications - The results of this study reveal the value of social media competitive analysis and show the power of text mining and sentiment analysis in extracting business value and competitive advantage. Suggestions, business and research implications are also provided to help companies in developing a social media competitive analysis strategy. Originality/value - Twitter analysis of food-based companies has been performed.
机译:目的——有一种强烈的对公司的需求监控customer-generated内容的社会媒体,不仅对自己,也对处理竞争和竞争对手评估业务的竞争环境。本文的目的是帮助公司随着社交媒体的竞争分析和社交媒体数据的转换知识创造的决策者,专门为app-based食品交付公司。在线app-based食物快递公司,即。Swiggy, Zomato UberEats,被认为是本研究。收集平台,客户的tweet与三家公司都拿来使用R-Studio和Lexicon-based情绪分析方法应用于微博获取的公司。用于计算不同的分数情绪。单词列表创建匹配出现在这个词推特和基于匹配的积极,负面和中性情绪得分决定。文本分析消费者的情绪。Lexicon-based情绪分类总是更好的比机器学习或其他模型因为它给自己做的灵活性情绪词典对情感进行分类。执行微博情感分析,lexicon-based分类方法和文本挖掘R-Studio平台上执行。结果表明,Zomato(26%积极情绪)已经收到了更多的积极情绪相比其他两家公司(25%积极情绪积极Swiggy和24%UberEats sentiments)。Zomato也低(12%的负面情绪)Swiggy和UberEats(13%相比,负的的情绪)。情绪有关的所有三个食品外卖企业微博进行了分析为业务提供建议。限制/影响的结果研究揭示了社会媒体的价值竞争分析和显示文本的力量采矿和情绪分析提取业务价值和竞争优势。建议,商业和研究意义还提供了帮助企业发展中一个社会媒体竞争分析策略。创意/价值——Twitter的分析食品类公司已经完成。

著录项

相似文献

  • 外文文献
  • 中文文献
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号